DFR:一种新的改进频繁项集挖掘算法

Sheng Chai, Hai-Chun Wang, Jifan Qiu
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引用次数: 3

摘要

在关联规则挖掘的研究中,效率一直是关注的问题。本文提出了一种改进的直接精细移除算法(direct - fine - remove, DFR)来挖掘由移除步骤和直接步骤组成的数据库。在对候选项集进行剪枝时,该算法在剪枝步骤中剔除了不频繁的候选项集子集。在直接步骤中,算法通过同时计算频繁项k与k的频率并进行比较,直接生成频繁项集。主要贡献包括:(1)提出了一种提高扫描数据库获取信息概率和减小项目集潜在规模的算法。(2)将提出的算法成功应用于教学评价系统,确定教学效果好的特征。实验表明,副教授成绩大于90分的概率为35%,支持度为40%;学士成绩大于90分的概率为16%,支持度为83%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DFR: A New Improved Algorithm for Mining Frequent Itemsets
Efficiency has been concerned in the research of association rules mining. This paper presents an improved method called Direct-Fined-Remove (DFR) algorithm to mine a database consisting of remove and direct steps. When pruning the candidates itemsets, the algorithm eliminate non-frequent subset of candidates in the remove steps. In the direct steps, the algorithm directly generates the frequent itemsets by computing and comparing the frequency of frequent k-itemsts with k in the meantime. The contributions include: (1) proposes an algorithm to raise the probability of obtaining information in scanning database and reduce the potential scale of itemsets. (2) successfully applies the proposed algorithm to the Teaching Evaluation System to determine characteristics of good teaching effect. Experiments show that the probability which grade point of associate professor being more than 90 is 35% the support degree is 40% and the probability which grade point of bachelor being more than 90 is 16% the support degree is 83%.
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